Improving the accuracy in software effort estimation: Using artificial neural network model based on particle swarm optimization

Zhang Dan
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引用次数: 30

Abstract

Recent years, the software industry is growing rapidly and people pay more attention on how to keep high efficiency in the process of software development and management. In the process of software development, time, cost, manpower are all critical factors. At the stage of software project planning, project managers will evaluate these parameters to get an efficient software develop process. Software effort evaluate is an important aspect which includes amount of cost, schedule, and manpower requirement. Hence evaluate the software effort at the early phase will improve the efficiency of the software develop process, and increase the successful rate of software development. This paper proposes an artificial neural network (ANN) prediction model that incorporates with Constructive Cost Model (COCOMO) which is improved by applying particle swarm optimization (PSO), PSO-ANN-COCOMO II, to provide a method which can estimate the software develop effort accurately. The modified model increases the convergence speed of artificial neural network and solves the problem of artificial neural network's learning ability that has a high dependency of the network initial weights. This model improves the learning ability of the original model and keeps the advantages of COCOMO model. Using two data sets (COCOMO I and NASA93) to verify the modified model, the result comes out that PSO-ANN-COCOMO II has an improvement of 3.27% in software effort estimation accuracy than the original artificial neural network Constructive Cost Model (ANN-COCOMO II).
提高软件工作量估计的准确性:基于粒子群优化的人工神经网络模型
近年来,随着软件产业的快速发展,如何在软件开发和管理过程中保持高效率越来越受到人们的关注。在软件开发过程中,时间、成本、人力都是关键因素。在软件项目规划阶段,项目经理将对这些参数进行评估,以获得一个有效的软件开发过程。软件工作评估是一个重要的方面,它包括成本、进度和人力需求。因此,在早期阶段对软件工作进行评估将提高软件开发过程的效率,并增加软件开发的成功率。本文提出了一种结合构建成本模型(COCOMO)的人工神经网络(ANN)预测模型,该模型通过粒子群优化(PSO)、PSO-ANN-COCOMO II的改进,提供了一种能够准确估计软件开发工作量的方法。修正后的模型提高了人工神经网络的收敛速度,解决了人工神经网络学习能力对网络初始权值依赖程度高的问题。该模型既提高了原模型的学习能力,又保持了COCOMO模型的优点。利用COCOMO I和NASA93两个数据集对改进后的模型进行验证,结果表明,PSO-ANN-COCOMO II比原人工神经网络构造成本模型(ANN-COCOMO II)的软件工作量估计精度提高了3.27%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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